NBCUniversal
Data Engineer, Engineering & Operations
Remote Data Engineering role with clear candidate location fit.
PostedJul 2, 2026
Eligible countries1 accepted country
Seniority signalSenior
Work settingRemote
Accepted candidate locations
USA
Role overview
Data Engineer, Engineering & Operations
Requirements and responsibilities
Readable role content extracted into sections for faster review.
Clean Room & Partner Onboarding
- Support partner onboarding into clean room environments across platforms such as Snowflake, LiveRamp, Databricks, or similar technologies.
- Follow clean room architecture patterns that are secure, scalable, privacy-preserving, and repeatable across partner engagements.
- Configure and manage clean room environments, including data access, environment setup, platform configuration, and release validation.
- Serve as the technical owner for assigned partner onboarding efforts, coordinating with product, engineering, operations, privacy, and partner-facing teams.
- Implement privacy-preserving controls such as aggregation thresholds, anonymization techniques, approved query patterns, and output validation checks.
Infrastructure Setup & Library Deployment
- Deploy and manage Python-based libraries, templates, and reusable components within the clean room and data platform ecosystem.
- Support environment setup, configuration management, package deployment, and version-controlled release processes.
- Partner with software engineering teams to operationalize reusable libraries for audience, measurement, reporting, and partner-facing workflows.
- Ensure platform components are deployed consistently across partner environments and aligned with established engineering standards.
Security, RBAC & Privacy Controls
- Design, implement, and enforce granular role-based access control policies across data platform environments.
- Configure least-privilege service accounts, roles, grants, schemas, shares, and data access patterns.
- Partner with security, privacy, and platform teams to ensure access controls meet internal policies and partner-specific requirements.
- Validate that partner-facing outputs adhere to privacy, security, and business requirements before release.
Data Pipelines & Data Product Ownership
- Design, build, and operate scalable ELT pipelines using advanced SQL, Snowpark, PySpark, dbt, or similar technologies.
- Develop and provision curated Gold datasets for audience, measurement, activation, and reporting use cases.
- Build reusable pipeline patterns that support batch and near real-time processing across Snowflake, Databricks, or similar platforms.
- Translate business and analytical requirements into reliable, well-documented, production-ready data products.
- Own pipeline performance, reliability, data correctness, and operational support for assigned data products.
Identity Resolution & Data Collaboration
- Implement and evolve identity resolution logic that maps internal NBCU data to third-party identifiers such as LUIDs, RampIDs, TransUnion IDs, or similar identity frameworks.
- Support privacy-safe identity workflows for audience matching, measurement, activation, and partner collaboration.
- Build validation checks to ensure identity mappings are accurate, secure, and compliant with approved usage patterns.
- Work with internal teams and external partners to troubleshoot match rates, data quality issues, and onboarding discrepancies.
Data Quality, Testing & Validation
- Build automated data quality checks using tools such as Great Expectations, dbt tests, custom SQL assertions, or similar frameworks.
- Define and monitor quality standards for schema drift, null rate spikes, volume anomalies, duplicate records, referential integrity, and unexpected data distribution changes.
- Create test strategies for partner-facing releases, including input validation, output validation, regression testing, and privacy checks.
- Document data assumptions, known limitations, validation logic, and operational support procedures.
FinOps & Operational Excellence
- Optimize query performance and platform costs through query tuning, clustering/partitioning strategies, caching, incremental processing, and workload management.
- Implement query tagging, workload tracking, and chargeback/showback models to improve cost transparency and partner-level attribution.
- Establish monitoring, alerting, runbooks, and standard operating procedures to improve platform reliability and reduce incident time-to-resolution.
- Participate in incident response, root cause analysis, and continuous improvement efforts for production data workflows.
Education
- Bachelor’s degree or equivalent practical experience in Computer Science, Information Systems, Software Engineering, Electrical Engineering, Electronics Engineering, Data Engineering, or a related technical field
Data Engineering
- 3+ years of experience in data engineering, including building and operating production data pipelines, data models, and data products
SQL & Python
- Deep proficiency in advanced SQL and Python for data processing, automation, pipeline development, validation, and operational support
Cloud Data Platforms
- 2+ years of hands-on experience with cloud data platforms such as Snowflake, Databricks, or similar technologies
ELT & Orchestration
- Experience building scalable ELT pipelines using tools such as Airflow, dbt, Snowpark, PySpark, or similar technologies
Clean Room Knowledge
- Exposure to data clean room concepts or platforms such as Snowflake Clean Rooms, Databricks Clean Rooms, LiveRamp, Habu, or similar technologies
Ad Tech / Measurement
- Exposure to advertising technology, audience activation, campaign delivery, reach and frequency, attribution, incrementality, or reporting workflows
Identity Resolution
- Experience working with identity graphs, hashed identifiers, RampIDs, LUIDs, TransUnion IDs, device IDs, household IDs, or similar identity frameworks
Certifications
- Snowflake SnowPro Core Certification, Databricks Certified Data Engineer Associate, or similar cloud/data platform certification
Similar roles
Keep a backup shortlist.
Stack
Use these tags to compare similar remote roles.
Location eligibility
Candidates should apply only when their profile country is listed here.
Your profileCountry not setSign in to check your country against this role.
Hiring flow
WithMira shows the role, then sends candidates to the company application.
1Check role fit, stack, and location eligibility in WithMira.
2Open the company application page from the tracked apply link.
3Save the role or subscribe for similar opportunities before leaving.